Detection of Chilo Suppressalis using Smartphone Images and Deep Learning

被引:0
|
作者
Fallah, M. [1 ]
Parmehr, E. Ghanbari [1 ]
机构
[1] Babol Noshirvani Univ Technol, Dept Geomat, Babol, Iran
关键词
Automatic pest detection; Intelligent agriculture; Machine learning; Smartphone;
D O I
10.22067/jam.2022.72647.1064
中图分类号
S2 [农业工程];
学科分类号
0828 ;
摘要
Introduction Rice is one of the most important main food sources in Iran and the world. The correct identification of the type of pest in the early stages of preventive action has a significant role in reducing the damage to the crop. Traditional methods are not only time-consuming but also provide inaccurate results, As a result, precision agriculture and its associated technology systems have emerged. Precision agriculture utilizes information technology such as GPS, GIS, remote sensing, and machine learning to implement agricultural inter-farm technical measures to achieve better marginal benefits for the economy and environment. Machine learning is a division of artificial intelligence that can automatically progress based on experience gained. Deep learning is a subfield of machine learning that models the concepts of using deep neural networks with several high-level abstract layers. This capability has led to careful consideration in agricultural management. The diagnosis of disease and predicting the time of destruction, with a focus on artificial intelligence, has been the subject of much research in precision agriculture. This article presents, in the first step, a trained model of the Chilo suppressalis pest using data received from the smartphone, validated with the opinion of experts. In the second step, we introduce the developed system based on the smartphone. By using this system, farmers can share their pest images through the Internet and learn about the type of pest on their farm, and finally, take the necessary measures to combat it. This operation is done quickly and efficiently using the developed artificial intelligence. In the continuation of the article, the second part introduces the materials and methods, and the third part presents the results. The fourth section also discusses and concludes the research.Materials and Methods Chilo suppressalis is one of the most important pests of rice in temperate and subtropical regions of Asia. The conventional approach employed by villagers to gather the Chilo suppressalis pest entails setting up a light source above a pan filled with water infused with a pesticide. At sunset, these insects are attracted to the light and fall into the water in the pan. This method is known as optical trapping. After catching the pest using optical traps, they are collected from the water surface, and their photo is taken with a mobile phone based on the location of the optical trap. The proposed method in this research consists of three main steps. Firstly, the farmer utilizes the software provided by the extended version known as Smart Farm. The farmer captures an image of the Chilo suppressalis pest and sends it along with its location to the system. The Smart Farm software program carries out image processing and pest range detection operations. The user then verifies the accuracy of the pest detection. In the second step, the images sent by the farmer are processed by the pre-trained model within the system. The model analyzes the images and determines the presence of the pest. Finally, after identifying the type of pest, the results, along with recommended methods for pest control, are sent back to the farmer. In summary, In this method, farmers employ the Smart Farm software to capture and transmit images of the Chilo suppressalis pest. The captured images then undergo image processing and pest range detection as the next steps in the process. The results, including pest identification and control methods, are then returned to the farmer. Results and Discussion The model has been designed with 400 artificial neural network processing units (APCs), achieving accuracy percentages of 88% and 92%. To conduct a more detailed study of the proposed model, the statistical criteria of recall and F-score were used. Based on the calculations, the trained model demonstrated a recall score of 91%. This criterion shows that the model was able to identify a large percentage of what was expected to be identified by the model. Additionally, the F-score, with an acceptable percentage of 88%, confirmed the accuracy of the trained model.Conclusion Researchers have always been highly interested in the valuable data freely provided by farmers for their studies and analyses. In this study, an intelligent system was designed for identifying types of pests such as worms and stalk eaters, which can automatically determine the pest type from the image sent by the farmer using artificial intelligence and deep learning. By utilizing the developed system, farmers can be informed of the type of pest present on their farm in the shortest possible time, with minimal required software training.
引用
收藏
页码:195 / 211
页数:17
相关论文
共 50 条
  • [21] Detection and Phylogenetic Analysis of Wolbachia wsp in the Chilo suppressalis (Lepidoptera: Crambidae) in China
    Chai, Huan-Na
    Du, Yu-Zhou
    ANNALS OF THE ENTOMOLOGICAL SOCIETY OF AMERICA, 2011, 104 (05) : 998 - 1004
  • [22] Skin Disease Screening System Based on Smartphone Captured Images Using Deep Learning
    Bassma
    Rifat, Rizuan Ahmed
    Islam, Md Kafiul
    2022 11TH INTERNATIONAL CONFERENCE ON COMMUNICATIONS, CIRCUITS AND SYSTEMS (ICCCAS 2022), 2022, : 267 - 272
  • [23] A Study on the Detection of Cattle in UAV Images Using Deep Learning
    Arnal Barbedo, Jayme Garcia
    Koenigkan, Luciano Vieira
    Santos, Thiago Teixeira
    Santos, Patricia Menezes
    SENSORS, 2019, 19 (24)
  • [24] WINDMILLS DETECTION USING DEEP LEARNING ON SENTINEL SATELLITE IMAGES
    Tertre, M.
    Laurencot, T.
    XXIV ISPRS CONGRESS: IMAGING TODAY, FORESEEING TOMORROW, COMMISSION III, 2022, 43-B3 : 197 - 203
  • [25] Breast Tumor Detection in Ultrasound Images Using Deep Learning
    Cao, Zhantao
    Duan, Lixin
    Yang, Guowu
    Yue, Ting
    Chen, Qin
    Fu, Huazhu
    Xu, Yanwu
    PATCH-BASED TECHNIQUES IN MEDICAL IMAGING (PATCH-MI 2017), 2017, 10530 : 121 - 128
  • [26] Malware Detection with Malware Images using Deep Learning Techniques
    He, Ke
    Kim, Dong Seong
    2019 18TH IEEE INTERNATIONAL CONFERENCE ON TRUST, SECURITY AND PRIVACY IN COMPUTING AND COMMUNICATIONS/13TH IEEE INTERNATIONAL CONFERENCE ON BIG DATA SCIENCE AND ENGINEERING (TRUSTCOM/BIGDATASE 2019), 2019, : 95 - 102
  • [27] Runway Detection and Localization in Aerial Images Using Deep Learning
    Akbar, Javeria
    Shahzad, Muhammad
    Malik, Muhammad Imran
    Ul-Hasan, Adnan
    Shafait, Fasial
    2019 DIGITAL IMAGE COMPUTING: TECHNIQUES AND APPLICATIONS (DICTA), 2019, : 559 - 566
  • [28] Road and railway detection in SAR images using deep learning
    Sen, Nigar
    Olgun, Orhun
    Ayhan, Oner
    IMAGE AND SIGNAL PROCESSING FOR REMOTE SENSING XXV, 2019, 11155
  • [29] Automated Anomaly Detection in Histology Images using Deep Learning
    Shelton, Lillie
    Soans, Rajath
    Shah, Tosha
    Forest, Thomas
    Janardhan, Kyathanahalli
    Napolitano, Michael
    Gonzalez, Raymond
    Carlson, Grady
    Shah, Jyoti K.
    Chen, Antong
    DIGITAL AND COMPUTATIONAL PATHOLOGY, MEDICAL IMAGING 2024, 2024, 12933
  • [30] Detection of Fairy Circles in UAV Images Using Deep Learning
    Zhu, Yuhong
    Moayed, Zahra
    Bollard-Breen, Barbara
    Doshi, Ashray
    Ramond, Jean Baptiste
    Klette, Reinhard
    2018 15TH IEEE INTERNATIONAL CONFERENCE ON ADVANCED VIDEO AND SIGNAL BASED SURVEILLANCE (AVSS), 2018, : 483 - 488